HUM3DIL:用于自动驾驶的半监督多模态三维人体姿态估计

Andrei Zanfir, M. Zanfir, Alexander N. Gorban, Jingwei Ji, Yin Zhou, Drago Anguelov, C. Sminchisescu
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引用次数: 8

摘要

自动驾驶是一个令人兴奋的新兴产业,提出了重要的研究问题。在感知模块中,三维人体姿态估计是一项新兴技术,可使自动驾驶汽车感知和理解行人微妙而复杂的行为。几十年来,硬件系统和传感器都有了显著改善,汽车可能配备了复杂的激光雷达和视觉系统,用于获取这些新信息的专用数据集也在不断扩大,但利用这些新信号来解决三维人体姿态估计这一核心问题的工作却不多。我们称之为 HUM3DIL(HUMan 3D from Images and LiDAR)的方法以半监督的方式有效地利用了这些互补信号,并在很大程度上优于现有方法。它是一种快速、紧凑的机载模型。具体来说,我们将激光雷达点嵌入像素对齐的多模态特征中,并通过一系列变换器细化阶段对其进行处理。在Waymo开放数据集上进行的定量实验支持了这些说法,我们在三维姿态估计任务上取得了最先进的结果。
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HUM3DIL: Semi-supervised Multi-modal 3D Human Pose Estimation for Autonomous Driving
Autonomous driving is an exciting new industry, posing important research questions. Within the perception module, 3D human pose estimation is an emerging technology, which can enable the autonomous vehicle to perceive and understand the subtle and complex behaviors of pedestrians. While hardware systems and sensors have dramatically improved over the decades -- with cars potentially boasting complex LiDAR and vision systems and with a growing expansion of the available body of dedicated datasets for this newly available information -- not much work has been done to harness these novel signals for the core problem of 3D human pose estimation. Our method, which we coin HUM3DIL (HUMan 3D from Images and LiDAR), efficiently makes use of these complementary signals, in a semi-supervised fashion and outperforms existing methods with a large margin. It is a fast and compact model for onboard deployment. Specifically, we embed LiDAR points into pixel-aligned multi-modal features, which we pass through a sequence of Transformer refinement stages. Quantitative experiments on the Waymo Open Dataset support these claims, where we achieve state-of-the-art results on the task of 3D pose estimation.
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